Full text: Resource and environmental monitoring (A)

   
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IAPRS & SIS, Vol.34, Part 7, “Resource and Environmental Monitoring”, Hyderabad, India,2002 
  
  
  
  
  
SCENARIO-1 
5000 ; 3 
| aM 0.0617x * 3827.5 4-4 line 
| r=0.163 en 1 
s rmse - 404 en 
S 4500 - e 
? ( 
= ? 25 < m 9 
3 . 
o T 
< - ? 
2j 3500 - 
= ; 
= " 
3000 +“ : ; 
3000 3500 4000 4500 5000 
OBSERVED YIELD (kg/ha) 
  
  
Figure 6. Comparison of observed and simulated district-wise 
wheat yields under constant crop management 
practices for Haryana (2000-01 season). 
Under all the three scenarios, CGMS generated grid-wise wheat 
yield map were aggregated to district using proportion of wheat 
in each grid as weight. Under scenario-1 there was poor 
correlation between the predicted and observed district yields 
with a root mean square error (RMSE) of 404 kg/ha which was 
9.8 percent of the observed State mean yield (Figure 6). The 
correlation became significantly positive with a value of 0.53 
under scenario-2 but the RMSE increased marginally to 11.5 
percent (Figure 7) indicating improvement in performance of 
CGMS. Under scenario-3 the correlation further increased to 
0.74 with an RMSE of 11.4 percent (Figure 8) indicating a 
close relation been simulated and observed yields and a further 
improvement in CGMS performance. These results highlight 
the importance of accurate specification of crop management 
practices, besides soil and weather, for predicting realistic yield 
spatially and the prototype CGMS described provides an ideal 
framework for such a purpose. 
  
SCENARIO-2 
50007 y = 0.347x+ 23488 ive 
r=053 i di a 
rmse = 472 uke : 
4500 2 
4000 
3500 - 
  
SIMULATED YIELD (kg/ha) 
  
  
* 
* 
* 
3000 4522.22 Li akt 
3000 3500 4000 4500 5000 
OBSERVED YIELD (kg/ha) 
  
4 
  
  
E 
  
Figure 7. Comparison of observed and simulated district-wise 
wheat yields under RS-derived varying dates of 
sowing and constant fertilizer and irrigation inputs 
for Haryana (2000-01 season). 
  
  
  
  
  
| SCENARIO-3  . | 
| 5000 sl 
| y=0.9129x + 1.0579 Le | 
| r=074 A iu line | 
© rmse = 470 Pa 
= 4500: AT 
o 
= 
a 
wd 
ul 
S 4000 + 
a 
n 
< 
2 3500 
J 
% 
3000 + i : ius 
3000 3500 4000 4500 5000 
OBSERVED YIELD (kg/ha) 
  
  
Figure 8. Comparison of observed and simulated district-wise 
wheat yields under RS-derived varying dates of 
sowing with variable fertilizer inputs and constant 
irrigation for Haryana (2000-01 season). 
In the present study, CGMS integrates RS information in two 
ways. Gird-wise crop distribution map derived from RS data is 
used as weight for computing district-level average yields. 
Also, the RS-derived spectral-temporal profile based phenology 
indicators were coupled to CGMS for estimating dates of 
sowing and its spatial variability. The specification of RS- 
CGMS-derived dates of sowing for improving CGMS 
performance is similar to the model “re-initialization” strategy 
(Moulin et al., 1998). The CGMS framework can also use other 
RS-derived information such as spatial inputs on agro- 
meteorological parameters (rainfall, radiation, temperature etc.) 
and crop biophysical parameters (LAI, fAPAR etc.). The agro- 
meteorological parameters can be directly used as model inputs 
or for accurate interpolation of point-wise meteorological data. 
The biophysical products, such as LAI, can be used for in- 
season model calibration / course correction to simulate 
accurate crop growth. With the availability of some of these 
products from MODIS sensor such a possibility is very real 
though these products need to be validated for their accuracy at 
muliplte sites and time (Pandya et al., 2002). 
While in this study, the NDVI as well as LAI were aggregated 
to district level for the purpose of estimating DOS, it is also 
possible to apply this technique at individual grid level for 
capturing within district spatial variability in DOS. The study 
has also highlighted the need for accurate crop identification as 
profiles and estimated DOS were sensitive to errors resulting 
from mixed wheat — sugarcane cropping pattern in two districts 
of Ambala and Yamunanagar. Improved spatial resolution from 
AWIFS (50m) is expected to resolve this problem. 
The CGMS described in this study predicts actual yield in 
contrast to potential and water-limited yield as implemented in 
MARS program. This has been made possible due to (a) use of 
a production level-3 model which incorporates water and N 
stress, and (b) specification of district-level variable crop 
management inputs. 
   
  
    
  
  
   
  
   
   
   
  
  
  
  
  
  
  
  
  
  
  
   
  
  
  
   
     
       
   
    
   
    
	        
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